Detection of Point Landmarks in Multidimensional Tensor Data

Ruiz-Alzola J, Kikinis R, Westin CF. Detection of Point Landmarks in Multidimensional Tensor Data. Signal Processing. 2001;81(10):2243–47.

Abstract

This paper describes a unified approach to the detection of point landmarks-whose neighborhoods convey discriminant information-including multidimensional scalar, vector, and higher-order tensor data. The method is based on the interpretation of generalized correlation matrices derived from the gradient of tensor functions, a probabilistic interpretation of point landmarks, and the application of tensor algebra. Results on both synthetic and real tensor data are presented.
Last updated on 02/24/2023